Automated machine learning-based model for the prediction of delirium in patients after surgery for degenerative spinal disease

被引:20
作者
Zhang, Yu [1 ,2 ]
Wan, Dong-Hua [3 ]
Chen, Min [3 ]
Li, Yun-Li [3 ]
Ying, Hui [1 ,2 ]
Yao, Ge-Liang [1 ,2 ]
Liu, Zhi-Li [1 ,2 ]
Zhang, Guo-Mei [4 ]
机构
[1] Nanchang Univ, Med Innovat Ctr, Affiliated Hosp 1, Nanchang, Jiangxi, Peoples R China
[2] Nanchang Univ, Inst Spine & Spinal Cord, Nanchang, Jiangxi, Peoples R China
[3] Nanchang Univ, Dept Orthoped, Affiliated Hosp 2, Nanchang, Jiangxi, Peoples R China
[4] Nanchang Univ, Outpatient Dept, Affiliated Hosp 2, Nanchang, Jiangxi, Peoples R China
关键词
delirium; machine learning; model prediction; postoperative; POSTOPERATIVE DELIRIUM; RISK-FACTORS; EPIDEMIOLOGY; DIAGNOSIS; SEVERITY;
D O I
10.1111/cns.14002
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
Objective This study used machine learning algorithms to identify critical variables and predict postoperative delirium (POD) in patients with degenerative spinal disease. Methods We included 663 patients who underwent surgery for degenerative spinal disease and received general anesthesia. The LASSO method was used to screen essential features associated with POD. Clinical characteristics, preoperative laboratory parameters, and intraoperative variables were reviewed and were used to construct nine machine learning models including a training set and validation set (80% of participants), and were then evaluated in the rest of the study sample (20% of participants). The area under the receiver-operating characteristic curve (AUROC) and Brier scores were used to compare the prediction performances of different models. The eXtreme Gradient Boosting algorithms (XGBOOST) model was used to predict POD. The SHapley Additive exPlanations (SHAP) package was used to interpret the XGBOOST model. Data of 49 patients were prospectively collected for model validation. Results The XGBOOST model outperformed the other classifier models in the training set (area under the curve [AUC]: 92.8%, 95% confidence interval [CI]: 90.7%-95.0%), validation set (AUC: 87.0%, 95% CI: 80.7%-93.3%). This model also achieved the lowest Brier Score. Twelve vital variables, including age, serum albumin, the admission-to-surgery time interval, C-reactive protein level, hypertension, intraoperative blood loss, intraoperative minimum blood pressure, cardiovascular-cerebrovascular disease, smoking, alcohol consumption, pulmonary disease, and admission-intraoperative maximum blood pressure difference, were selected. The XGBOOST model performed well in the prospective cohort (accuracy: 85.71%). Conclusion A machine learning model and a web predictor for delirium after surgery for the degenerative spinal disease were successfully developed to demonstrate the extent of POD risk during the perioperative period, which could guide appropriate preventive measures for high-risk patients.
引用
收藏
页码:282 / 295
页数:14
相关论文
共 45 条
  • [1] Association between plasma tau and postoperative delirium incidence and severity: a prospective observational study
    Ballweg, Tyler
    White, Marissa
    Parker, Margaret
    Casey, Cameron
    Bo, Amber
    Farahbakhsh, Zahra
    Kayser, Austin
    Blair, Alexander
    Lindroth, Heidi
    Pearce, Robert A.
    Blennow, Kaj
    Zetterberg, Henrik
    Lennertz, Richard
    Sanders, Robert D.
    [J]. BRITISH JOURNAL OF ANAESTHESIA, 2021, 126 (02) : 458 - 466
  • [2] Low neuronal metabolism during isoflurane-induced burst suppression is related to synaptic inhibition while neurovascular coupling and mitochondrial function remain intact
    Berndt, Nikolaus
    Kovacs, Richard
    Schoknecht, Karl
    Roesner, Joerg
    Reiffurth, Clemens
    Maechler, Mathilde
    Holzhuetter, Hermann-Georg
    Dreier, Jens P.
    Spies, Claudia
    Liotta, Agustin
    [J]. JOURNAL OF CEREBRAL BLOOD FLOW AND METABOLISM, 2021, 41 (10) : 2640 - 2655
  • [3] Machine Learning in Medicine
    Deo, Rahul C.
    [J]. CIRCULATION, 2015, 132 (20) : 1920 - 1930
  • [4] Basic Artificial Intelligence Techniques Machine Learning and Deep Learning
    Erickson, Bradley J.
    [J]. RADIOLOGIC CLINICS OF NORTH AMERICA, 2021, 59 (06) : 933 - 940
  • [5] Prevalence and risk factors of postoperative delirium after spinal surgery: a meta-analysis
    Gao, Hua
    Ma, Hui-Juan
    Li, Ying-Jia
    Yin, Ci
    Li, Zheng
    [J]. JOURNAL OF ORTHOPAEDIC SURGERY AND RESEARCH, 2020, 15 (01)
  • [6] Clinical phenotypes of delirium during critical illness and severity of subsequent long-term cognitive impairment: a prospective cohort study
    Girard, Timothy D.
    Thompson, Jennifer L.
    Pandharipande, Pratik P.
    Brummel, Nathan E.
    Jackson, James C.
    Patel, Mayur B.
    Hughes, Christopher G.
    Chandrasekhar, Rameela
    Pun, Brenda T.
    Boehm, Leanne M.
    Elstad, Mark R.
    Goodman, Richard B.
    Bernard, Gordon R.
    Dittus, Robert S.
    Ely, E. W.
    [J]. LANCET RESPIRATORY MEDICINE, 2018, 6 (03) : 213 - 222
  • [7] Construction and Application of a Model for Predicting the Risk of Delirium in Postoperative Patients With Type a Aortic Dissection
    He, Junfeng
    Ling, Qing
    Chen, Yuhong
    [J]. FRONTIERS IN SURGERY, 2021, 8
  • [8] Delirium in elderly people
    Inouye, Sharon K.
    Westendorp, Rudi G. J.
    Saczynski, Jane S.
    [J]. LANCET, 2014, 383 (9920) : 911 - 922
  • [9] A multicomponent intervention to prevent delirium in hospitalized older patients
    Inouye, SK
    Bogardus, ST
    Charpentier, PA
    Leo-Summers, L
    Acampora, D
    Holford, TR
    Cooney, LW
    [J]. NEW ENGLAND JOURNAL OF MEDICINE, 1999, 340 (09) : 669 - 676
  • [10] CLARIFYING CONFUSION - THE CONFUSION ASSESSMENT METHOD - A NEW METHOD FOR DETECTION OF DELIRIUM
    INOUYE, SK
    VANDYCK, CH
    ALESSI, CA
    BALKIN, S
    SIEGAL, AP
    HORWITZ, RI
    [J]. ANNALS OF INTERNAL MEDICINE, 1990, 113 (12) : 941 - 948